基于能量函数变换的EEG污染心电伪影检测与消除

M. Ali, Akber Dewan, M. J. Hossain, Md Moshiul Hoque, Oksam Chael
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引用次数: 9

摘要

心电场在全身范围内传播,在脑电图记录中引入伪影,可能导致对监测结果的错误解释。为此,本文提出了一种从脑电图中自动检测和减少心电伪影的方法。心电信号具有自身的尖峰特性和周期性。此外,它还缺乏与脑电信号的相关性。利用上述性质检测EEG中的心电伪影,并提出了一种自动去除伪影的方法。该算法首先采用基于能量函数的方法强调受污染心电伪信号的r波,然后采用自适应阈值法结合聚类方法检测脑电信号中受污染的候选心电伪信号r峰。然后利用r波的周期性信息,采用搜索机制作为后处理,更准确地检测r峰。然后,生成被EEG污染的心电伪信号的噪声模型,并将其从EEG记录中去除,使其与伪信号分离。在减法之前,采用时变对齐方法来提高伪影减少方法的有效性。大量的实验结果表明,该方法在自动检测心电伪影和从脑电信号中提取伪影方面是有效和令人鼓舞的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contaminated ECG Artifact Detection and Elimination from EEG Using Energy Function Based Transformation
Electrical field of the heart (ECG) propagates throughout the body and introduce artifact in EEG recordings which may lead to incorrect interpretation of monitoring result. Hence in this paper, we present a method of automatic detection and reduction of ECG artifact from EEG. ECG has its own spike like property and periodicity. Moreover, it also has lack of correlation with the EEG signal. We have utilized the aforementioned properties to detect ECG artifact in EEG and have employed a method to remove it automatically. In the first step of the algorithm, an energy function based method is used to emphasize the R-waves of contaminated ECG artifact and thereafter, an adaptive thresholding method along with clustering is used to detect contaminated candidate R-spikes of ECG artifact in EEG signal. After that utilizing periodic information of R-wave, a searching mechanism is employed as post processing to detect the R-peaks more accurately. Thereafter, noise model of ECG artifact contaminated with EEG is generated and finally it is subtracted from the EEG recordings to decontaminate it from the artifact. Before subtraction, a time varying alignment procedure is applied to increase the effectiveness of the artifact reduction method. Results obtained from our extensive experiments show that the proposed method is effective and encouraging in terms of automatic ECG artifact detection and reduction from EEG signal.
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